Lecture 2: Problem Solving using State Space Representations CSE 4107, FALL 2018 Overview Characteristics of agents and environments Problem-solving agents where search consists of state space operators start state goal states Abstraction and problem formulation Search trees: an effective way to represent the search process Reading: chapter 2 and chapter 3.1, 3.2, 3.3 Agents An agent is anything that can be viewed as perceiving its environment through sensors and acting upon that environment through actuators Human agent: eyes, ears, and other organs for sensors; hands, legs, mouth, and other body parts for actuators Robotic agent: cameras and infrared range finders for sensors; various motors for actuators Agents and environments The agent function maps from percept histories to actions: [f: P* A] The agent program runs on the physical architecture to produce f agent = architecture + program Vacuum-cleaner world Percepts: location and state of the environment, e.g., [A,Dirty], [A,Clean], [B,Dirty] Actions: Left, Right, Suck, NoOp Task Environment Before we design an intelligent agent, we must specify its “task environment”: PEAS: Performance measure Environment Actuators Sensors Performance measure Performance measure: An objective criterion for success of an agent's behavior, e.g., Robot driver? Chess-playing program? Spam email classifier? Rational Agent 8 Rational Agent: selects actions that is expected to maximize its performance measure, given percept sequence given agent’s built-in knowledge sidepoint: how to maximize expected future performance, given only historical data Md. Wasi Ul Kabir 2/17/2019 PEAS Example: Agent = robot driver in DARPA Challenge Performance measure: Time to complete course Environment: Roads, other traffic, obstacles Actuators: Steering wheel, accelerator, brake, signal, horn Sensors: Optical cameras, lasers, sonar, accelerometer, speedometer, GPS, odometer, engine sensors, PEAS Example: Agent = Medical diagnosis system Performance measure: Healthy patient, minimize costs, lawsuits Environment: Patient, hospital, staff Actuators: Screen display (questions, tests, diagnoses, treatments, referrals) Sensors: Keyboard (entry of symptoms, findings, patient's answers) Environment types Fully observable (vs. partially observable): An agent's sensors give it access to the complete state of the environment at each point in time. Deterministic (vs. stochastic): The next state of the environment is completely determined by the current state and the action executed by the agent. If the environment is deterministic except for the actions of other agents, then the environment is strategic Deterministic environments can appear stochastic to an agent (e.g., when only partially observable) Episodic (vs. sequential): An agent’s action is divided into atomic episodes. Decisions do not depend on previous decisions/actions. Environment types Static (vs. dynamic): The environment is unchanged while an agent is deliberating. Discrete (vs. continuous): A discrete set of distinct, clearly defined percepts and actions. How we represent or abstract or model the world Single agent (vs. multi-agent): An agent operating by itself in an environment. Does the other agent interfere with my performance measure? task environm. observable deterministic/ stochastic episodic/ sequential static/ dynamic discrete/ continuous agents crossword puzzle fully determ. sequential static discrete single chess with clock fully strategic sequential semi discrete multi partial stochastic sequential dynamic continuous multi fully determ. episodic semi continuous single partpicking robot partial stochastic episodic dynamic continuous single refinery controller partial stochastic sequential dynamic continuous single interact. tutor partial stochastic sequential dynamic discrete multi poker taxi driving medical diagnosis image analysis What is the environment for the DARPA Challenge? Agent = robotic vehicle Environment = 130-mile route through desert Observable? Deterministic? Episodic? Static? Discrete? Agents? Agent types Five basic types in order of increasing generality: Simple reflex agents Model-based reflex agents Goal-based agents Problem-solving agents Utility-based agents Can distinguish between different goals Learning agents Simple reflex agent architecture 17 Md. Wasi Ul Kabir 2/17/2019 Architecture for model-based agent 18 Md. Wasi Ul Kabir 2/17/2019 Architecture for goal-based agent Architecture for a complete utility-based agent Problem-Solving Agents Intelligent agents can solve problems by searching a state-space State-space Model the agent’s model of the world usually a set of discrete states e.g., in driving, the states in the model could be towns/cities Goal State(s) a goal is defined as a desirable state for an agent there may be many states which satisfy the goal test e.g., drive to a town with a ski-resort or just one state which satisfies the goal e.g., drive to Mammoth Operators (actions, successor function) operators are legal actions which the agent can take to move from one state to another Example: Traveling in Romania Example: Traveling in Romania On holiday in Romania; currently in Arad Flight leaves tomorrow from Bucharest Formulate goal: be in Bucharest Formulate problem: states: various cities actions/operators: drive between cities Find solution By searching through states to find a goal sequence of cities, e.g., Arad, Sibiu, Fagaras, Bucharest Execute states that lead to a solution State-Space Problem Formulation A problem is defined by four items: 1. initial state e.g., "at Arad“ 2. actions or successor function S(x) = set of action and state pairs e.g., S(Arad) = {<Arad Zerind, Zerind>, … } 3. goal test (or set of goal states) e.g., x = "at Bucharest”, Checkmate(x) 4. path cost (additive) e.g., sum of distances, number of actions executed, etc. c(x,a,y) is the step cost, assumed to be ≥ 0 A solution is a sequence of actions leading from the initial state to a goal state Abstraction Definition of Abstraction: Process of removing irrelevant detail to create an abstract representation: ``high-level”, ignores irrelevant details Abstraction Navigation Example: how do we define states and operators? First step is to abstract “the big picture” i.e., solve a map problem nodes = cities, links = freeways/roads (a high-level description) this description is an abstraction of the real problem Can later worry about details like freeway onramps, refueling, etc Abstraction is critical for automated problem solving must create an approximate, simplified, model of the world for the computer to deal with: real-world is too detailed to model exactly good abstractions retain all important details The State-Space Graph Graphs: nodes, arcs, directed arcs, paths Search graphs: States are nodes operators are directed arcs solution is a path from start S to goal G Problem formulation: Give an abstract description of states, operators, initial state and goal state. Problem solving: Generate a part of the search space that contains a solution Example: 8-queens problem State-Space problem formulation states? -any arrangement of n<=8 queens -or arrangements of n<=8 queens in leftmost n columns, 1 per column, such that no queen attacks any other. initial state? no queens on the board actions? -add queen to any empty square -or add queen to leftmost empty square such that it is not attacked by other queens. goal test? 8 queens on the board, none attacked. path cost? 1 per move Example: Robot Assembly States Initial state Actions Goal test Path Cost Example: Robot Assembly States: configuration of robot (angles, positions) and object parts Initial state: any configuration of robot and object parts Actions: continuous motion of robot joints Goal test: object assembled? Path Cost: time-taken or number of actions Learning a spam email classifier States Initial state Actions Goal test Path Cost Learning a spam email classifier States: settings of the parameters in our model Initial state: random parameter settings Actions: moving in parameter space Goal test: optimal accuracy on the training data Path Cost: time taken to find optimal parameters Example: 8-puzzle states? initial state? actions? goal test? path cost? Example: 8-puzzle states? locations of tiles initial state? given actions? move blank left, right, up, down goal test? goal state (given) path cost? 1 per move A Water Jug Problem You have a 4- gallon and a 3gallon water jug You have a faucet with an unlimited amount of water You need to get exactly 2 gallons in 4-gallon jug Puzzle-solving as Search State representation: (x, y) x: Contents of four gallon y: Contents of three gallon Start state: (0, 0) Goal state (2, n) Operators Fill 3-gallon from faucet, fill 4-gallon from faucet Fill 3-gallon from 4-gallon , fill 4-gallon from 3-gallon Empty 3-gallon into 4-gallon, empty 4-gallon into 3-gallon Dump 3-gallon down drain, dump 4-gallon down drain Production Rules for the Water Jug Problem 1 (x,y) (4,y) if x < 4 Fill the 4-gallon jug 2 (x,y) (x,3) if y < 3 Fill the 3-gallon jug 3 (x,y) (x – d,y) if x > 0 Pour some water out of the 4-gallon jug 4 (x,y) (x,y – d) if x > 0 Pour some water out of the 3-gallon jug 5 (x,y) (0,y) if x > 0 Empty the 4-gallon jug on the ground The Water Jug Problem (cont’d) 6 (x,y) (x,0) if y > 0 Empty the 3-gallon jug on the ground 7 (x,y) (4,y – (4 – x)) if x + y ≥ 4 and y > 0 Pour water from the 3-gallon jug into the 4gallon jug until the 4-gallon jug is full 8 (x,y) (x – (3 – y),3) if x + y ≥ 3 and x > 0 Pour water from the 4-gallon jug into the 3gallon jug until the 3-gallon jug is full 9 (x,y) (x + y, 0) if x + y ≤ 4 and y > 0 Pour all the water from the 3-gallon jug into the 4-gallon jug 10 (x,y) (0, x + y) if x + y ≤ 3 and x > 0 Pour all the water from the 4-gallon jug into the 3-gallon jug One Solution to the Water Jug Problem Gallons in the 4Gallon Jug Gallons in the 3Gallon Jug Rule Applied 0 0 2 0 3 9 3 0 2 3 3 7 4 2 5 0 2 9 2 0 Tree-based Search Basic idea: Exploration of state space by generating successors of alreadyexplored states (a.k.a. expanding states). Every state is evaluated: is it a goal state? In practice, the solution space can be a graph, not a tree E.g., 8-puzzle More general approach is graph search Tree search can end up repeatedly visiting the same nodes Unless it keeps track of all nodes visited …but this could take vast amounts of memory Tree search example Tree search example Tree search example Tree search example This “strategy” what differentia different searc algorithms States versus Nodes A state is a (representation of) a physical configuration A node is a data structure constituting part of a search tree contains info such as: state, parent node, action, path cost g(x), depth The Expand function creates new nodes, filling in the various fields and using the SuccessorFn of the problem to create the corresponding states. State Spaces versus Search Trees State Space Set of valid states for a problem Linked by operators e.g., 20 valid states (cities) in the Romanian travel problem Search Tree Root node = initial state Child nodes = states that can be visited from parent Note that the depth of the tree can be infinite Partial search tree E.g., via repeated states Portion of tree that has been expanded so far Fringe Leaves of partial search tree, candidates for expansion Search trees = data structure to search state-space Search Tree for the 8 puzzle problem Search Strategies A search strategy is defined by picking the order of node expansion Strategies are evaluated along the following dimensions: completeness: does it always find a solution if one exists? time complexity: number of nodes generated space complexity: maximum number of nodes in memory optimality: does it always find a least-cost solution? Time and space complexity are measured in terms of b: maximum branching factor of the search tree d: depth of the least-cost solution m: maximum depth of the state space (may be ∞) Why Search can be hard Assuming b=10, 1000 nodes/sec, 100 bytes/node Depth of Solution Nodes to Expand Time Memory 0 1 1 millisecond 100 bytes 2 111 0.1 seconds 11 kbytes 4 11,111 11 seconds 1 megabyte 8 108 31 hours 11 giabytes 12 1012 35 years 111 terabytes Uninformed search Breadth-first, depth-first Uniform cost Iterative deepening Informed (heuristic) search Greedy best-first A* Memory-bounded heuristic search And more…. Local search and optimization Hill-climbing Simulated annealing Genetic algorithms Summary Characteristics of agents and environments Problem-solving agents where search consists of state space operators start state goal states Abstraction and problem formulation Search trees: an effective way to represent the search process Reading: chapter 2 and chapter 3.1, 3.2, 3.3 References 53 1.https://en.wikipedia.org/wiki/Artificial_intelligen ce 2. http://aima.cs.berkeley.edu/ Md. Wasi Ul Kabir 2/17/2019 54 Questions ? Md. Wasi Ul Kabir 2/17/2019